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Dynamic Response of Novel Adaptive Modified Recurrent Legendre Neural Network Control for PMSM Servo-Drive Electric Scooter

机译:新型自适应修正递归勒让德神经网络控制对PMSM伺服电动踏板车的动态响应

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摘要

Because an electric scooter driven by permanent magnet synchronous motor (PMSM) servo-driven system has the unknown nonlinearity and the time-varying characteristics, its accurate dynamic model is difficult to establish for the design of the linear controller in whole system. In order to conquer this difficulty and raise robustness, a novel adaptive modified recurrent Legendre neural network (NN) control system, which has fast convergence and provide high accuracy, is proposed to control for PMSM servo-driven electric scooter under the external disturbances and parameter variations in this study. The novel adaptive modified recurrent Legendre NN control system consists of a modified recurrent Legendre NN control with adaptation law and a remunerated control with estimation law. In addition, the online parameter tuning methodology of the modified recurrent Legendre NN control and the estimation law of the remunerated control can be derived by using the Lyapunov stability theorem and the gradient descent method. Furthermore, the modified recurrent Legendre NN with variable learning rate is proposed to raise convergence speed. Finally, comparative studies are demonstrated by experimental results in order to show the effectiveness of the proposed control scheme.
机译:由于永磁同步电动机(PMSM)伺服驱动系统驱动的电动踏板车具有未知的非线性和时变特性,因此难以为整个系统的线性控制器设计建立准确的动力学模型。为了克服这一困难并提高鲁棒性,提出了一种新型的自适应改进的递归勒让德神经网络(NN)控制系统,该系统收敛速度快,具有较高的精度,可以在外部干扰和参数作用下控制永磁同步电机伺服电动踏板车。这项研究的变化。新型的自适应修正Legendre递归神经网络控制系统由具有修正定律的修正Legendre递归神经网络控制和具有估计律的有偿控制组成。此外,可以通过使用Lyapunov稳定性定理和梯度下降法来推导修正的Legendre NN控制的在线参数调整方法和有酬控制的估计律。此外,提出了一种改进的具有可变学习率的递归Legendre NN,以提高收敛速度。最后,通过实验结果证明了对比研究,以证明所提出的控制方案的有效性。

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